CakeResume 找人才

进阶搜寻
On
4 到 6 年
6 到 10 年
10 到 15 年
15 年以上
Avatar of Fatemeh Bahartash.
Avatar of Fatemeh Bahartash.
Radiologist and gynecologist @Taleqani Hospital of Tehran
2005 ~ 现在
超過一年
Bachelor's Of Radiology : MRI Expert & expert of OPG , Bitewing technique , Lateral cephalometry , Mammography, Bone density , Single tooth radiography , Color Radiography ,Visipek Enema Radiology , Swallow , Transit ,,Work experience at General Hospital, with orthopedic cases,In the field of cosmetics, a professional make-up artist; Specializing in providing a variety of makeup, Breeze Bros. eyebrow tattoo, eyebrow shadow , Journal Haircut , Hair Brushing , Hair color and lightSkills instagram Hair Cutting Radiology MRI Makeup Artistry tattoo Turkish English as a Second Language (ESL) Hair Coloring Hair Styling Art Beauty Makeup Supervisory Skills opg Languages Persian — Professional Turkish — Fluent Azerbaijani — Professional English — Fluent
instagram
Hair Cutting
Radiology
全职 / 暂不考虑远端工作
10 到 15 年
Urmia University
Bachelor's Of Radiology : MRI Expert & expert of OPG , Bitewing technique , Lateral cephalometry , Mammography, Bone density , Single tooth radiography , Color Radiography ,Visipek Enema Radiology , Swallow , Transit ,, Work experience at General Hospital, with orthopedic cases, In the field of cosmetics, a professional make-up artist; Specializing in providing a variety of makeup, Breeze Bros. eyebrow tattoo, eyebrow shadow , Journal Haircut , Hair Brushing , Hair color and light .
Avatar of SJ   Hairdressing and makeup.
Avatar of SJ   Hairdressing and makeup.
hair and makeup artist @citygirl
hair and makeup artist
超過一年
work alongside other creatives within fashion, film and visual industries in addition to providing all types of hairdressing and makeup services both for private clients and at corporate events . hair and makeup artist GRE, GB [email protected] and Experience OctoberPresent London, Brighton , Home Counties, Ibiza Freelance Hair and Makeup Artist Presently completing my masters in fashion branding and marketing working with buying teams and head designers to obtain more knowledge of global branding and brand positioning. Managing a variety of hair and beauty services, including specialist cutting, colouring, styling, extensions, bridal hair, bridal makeup and
Word
Photoshop
Excel
兼职 / 对远端工作有兴趣
15 年以上
University of Sothhampton
Fashion Marketing and Branding
Avatar of the user.
Marketing Manager
兩個月內
Word
Illustrator
Photoshop
就职中
目前没有兴趣寻找新的机会
全职 / 我只想远端工作
15 年以上
The Australian National University
Visual Art
Avatar of the user.
Avatar of the user.
SPG Event Bear Brand Netsle @PT. Arina Multikarya
2021 ~ 2021
Promotor
超過一年
Word
Excel
PowerPoint
全职 / 对远端工作有兴趣
4 到 6 年
SMK N 2 PURWAKARTA
Rekayasa Perangkat Lunak (RPL)
Avatar of James Chu.
Avatar of James Chu.
Research Analyst @MatrixDAO
2022 ~ 现在
半年內
CHU I-FAN Crypto fanatic Defi believer Trading scientist New Taipei City 231, Taiwan (R.O.C.) [email protected] Professional Experiences STAR BIT Innovation, August 2018 – Present Marketing Manager/ Business Development Manager Da’an Dist., Taipei City Major Accomplishments - Program the strategy of social media including Blockchain cutting-edge technology research, ICO guide article, IEO cooperation. -Lead industry cooperation project(IOST, Zilliqa, Tron, EOS) and organize engineer team to accomplish the whole project, time managing and control the budget, fulfill the demand from clients. -Establish relationships across governments, legislator, college
Google Drive
就职中
全职 / 我只想远端工作
4 到 6 年
Fju Jen Catholic University
Public Health, Japanese
Avatar of the user.
Avatar of the user.
Photographer @Har Kwan Luk
2000 ~ 现在
Photographer
超過一年
Photoshop
Photography
就职中
对远端工作有兴趣
15 年以上
Univeristy of Houston
Photography

最轻量、快速的招募方案,数百家企业的选择

搜寻简历,主动联系求职者,提升招募效率。

  • 浏览所有搜寻结果
  • 每日可无限次数开启陌生对话
  • 搜尋僅開放付費企業檢視的简历
  • 检视使用者信箱 & 电话
搜寻技巧
1
Search a precise keyword combination
senior backend php
If the number of the search result is not enough, you can remove the less important keywords
2
Use quotes to search for an exact phrase
"business development"
3
Use the minus sign to eliminate results containing certain words
UI designer -UX
免费方案仅能搜寻公开简历。
升级至进阶方案,即可浏览所有搜寻结果(包含数万笔览仅在 CakeResume 平台上公开的简历)。

职场能力评价定义

专业技能
该领域中具备哪些专业能力(例如熟悉 SEO 操作,且会使用相关工具)。
问题解决能力
能洞察、分析问题,并拟定方案有效解决问题。
变通能力
遇到突发事件能冷静应对,并随时调整专案、客户、技术的相对优先序。
沟通能力
有效传达个人想法,且愿意倾听他人意见并给予反馈。
时间管理能力
了解工作项目的优先顺序,有效运用时间,准时完成工作内容。
团队合作能力
具有向心力与团队责任感,愿意倾听他人意见并主动沟通协调。
领导力
专注于团队发展,有效引领团队采取行动,达成共同目标。
一年內
Machine Learning Engineer
Logo of Taiwan AI Labs.
Taiwan AI Labs
2019 ~ 现在
Taipei, 台灣
专业背景
目前状态
就职中
求职阶段
目前没有兴趣寻找新的机会
专业
机器学习工程师, 数据科学家
产业
人工智能 / 机器学习, 大数据, 软件
工作年资
2 到 4 年
管理经历
我有管理 1~5 人的经验
技能
Natural Language Processing
Machine Learning
Deep Learning
Data Science
Python
Git
PyTorch
Keras
CI/CD
k8s
Docker
Data Analysis
CNN
语言能力
English
专业
求职偏好
希望获得的职位
Machine Learning Engineer
预期工作模式
全职
期望的工作地点
台灣台北, 台灣台南市, 美國加利福尼亞洛杉磯, 德國慕尼黑, 加拿大安大略多倫多
远端工作意愿
对远端工作有兴趣
接案服务
学历
学校
NCKU, Master Degree
主修科系
Computer Science
列印
User 9593 1475392706

Kai-Chou, Yang

As a Kaggle Competition Master and a winner of international data science challenges, I am experienced in machine learning, deep learning and related frameworks such as PyTorch.


My research focuses on natural language processing (NLP), where I have released 11 open-source projects such as MianBot (700+★ on Github) and presented certain academic papers on top conferences like ACL, AAAI, CIKM, and WSDM.

International Awards

For the following achievements, I am the first author as well as the team leader.

2nd Place, CIKM Cup: Cross-lingual Short-text Matching Challenge

  • Proposed two densely-connected architectures, CPRNN and DACNN, for sentence pair modeling.
  • Fused semantic features from different levels to create diversity intra-models.
  • The solution has been oral presented on CIKM 2018 in Turin, Italy.

3rd Place, WSDM Cup: Fake News Classification Challenge

  • Implemented various NLI networks like ESIM and injected world knowledge using BERT.
  • Proposed a disagreement-aware model based on the single-word attention.
  • The paper has been oral presented on WSDM 2019 in Melbourne, Australia.

4th place, Google AI: Gendered Pronoun Resolution Competition

  • Leveraged the information redundancy from BERT and extracted features from the optimal layer.
  • Proposed a multi-heads Siamese semantic scorer for answer selection.
  • The paper has been presented on ACL 2019 in Florence, Italy.

Kaggle Competition Master, Ranked top 0.2% (233/114,366)

  • Top 1% (4/838), Gendered Pronoun Resolution Competition.
  • Top 1% (27/4,550), Toxic Comment Classification Challenge.
  • Top 3% (30/1,449), CareerCon 2019 - Help Navigate Robots.
  • Top 4% (103/3,165), Jigsaw Unintended Bias in Toxicity Classification.
  • Top 6% (223/3,633), CommonLit Readability Prize. 
  • Top 10% (384/3,946), TalkingData AdTracking Fraud Detection Challenge.

Work Experience

Taiwan AI Labs, Machine Learning Engineer, Sep 2019 ~ Now

Question Answering System

  • Propose a conditional question generator with mT5 for controllable QA data augmentation and as the base of dense retrieval, which improves recall@50 from baseline model by 16%.
  • Build a generative pseudo labeling pipeline using a open-domain passage retriever and machine reader, which improve the nDCG@10 by 4.2 - 9.7, on various domains.
  • Build an efficient passage re-ranker based on tiny-bert with a time-series based clustering framework for effective negative passage sampling.
  • Leverage FinBERT on QA analysis and slot filling for fintech dialogue system.

Natural Language Understanding 

  • Implement a document encoder with self-contrastive learning and a document clustering algorithm, which is scalable for million scale of streaming data.
  • Implement a GROVER-like generator as the backbone for topic detection, article rewriting, and tag generation.
  • Propose a semi-automatic framework for fake-news identification, which gathers evidence from event properties, user behavior and textual features.
  • Propose a SOTA Chinese typo correction system based on a boosting loop of automatic speech recognition and text to speech for weak supervision.
  • Build a general-purpose NLP training pipeline for team use involving data augmentation, data regularization, and unsupervised domain adaptation.

Education

Master in Department of Computer Science, NCKU                                         GPA: 4.30

  • Honorary member of the Phi Tau Phi Scholastic Honor Society. (Ranked 1st among all graduates.)
  • As a teaching assistant for Introduction to Data Science, Data Mining and Discrete Mathematics.
  • As a speaker / teaching assistant for introduction lectures of machine learning.

Bachelor in Department of Computer Science, NCKU                                      GPA: 3.92






  • Academic excellence awards 2016.
  • Academic excellence awards 2015.
  • Honorable mention on the graduation exhibition.
  • Research assistant on a question answering system project for the Ministry of Science and Technology.

Side Projects

I list some of my project experiences. You can refer to my Github for the other interesting ideas.

Mianbot

  • Got 700+ stars and 200+ forks on Github.
  • Implemented the hierarchical keywords matching using word2vec.
  • Implemented the IR-based searching module to support chit-chat.
  • Allow user to define customized scenarios with JSON.
  • The extracted QA pairs were released in PTT-Gossiping-Dataset, a widely-used Chinese chit-chat corpus.
Paragraph image 00 00@2x

NCKU Smart-Life LineBot

  • A Linebot that helps solve trivial matters such as restaurant recommendation.
  • The dialogue system is based on LUIS for intent classification.
  • The backend was built with Django / Flask (new version) and host on Heroku.
  • The backend is connected with Line server using the web API.
Paragraph image 00 00@2x

Knowledge & Skills


  • General Machine Learning
    • Classification, Regression, Clustering, Boosting, Feature Engineering.
  • Natural Language Processing
    • Sentence Pair Modeling: Natural language Inference, Machine Reading Comprehension, Sentence Similarity
    • Text Classification / Regression / Clustering
    • Deep contextual representation (ELMO / BERT / XLNet / ELECTRA / RoBERTa / ERINE2.0 / BigBird / T5)
  • Recommendation System
    • Factorization: Matrix Factorization, Factorization Machine, DeepFM
    • Graph Embedding: DeepWalk, Node2Vec, item2Vec

Publication


  1. Fake News Detection as Natural Language Inference. Kai-Chou Yang; Timothy Niven; Hung-Yu Kao. WSDM Cup 2019
  2. Fill the GAP: Exploiting BERT for Pronoun Resolution. Kai-Chou Yang; Timothy Niven; Tzu Hsuan Chou; Hung-Yu Kao. ACLWS'19
  3. Generalize Sentence Representation with Self-Inference. Kai-Chou Yang; Hung-Yu Kao. AAAI 2020
  4. The Prevalence and Impact of Fake News on COVID-19 Vaccination in Taiwan: A Retrospective Study of Digital Media. Yen-Pin Chen; Yi-Ying Chen; Kai-Chou Yang; Feipei Lai; Chien-Hua Huang; Yun-Nung Chen; Yi-Chin Tu. JMIR
简历
个人档案
User 9593 1475392706

Kai-Chou, Yang

As a Kaggle Competition Master and a winner of international data science challenges, I am experienced in machine learning, deep learning and related frameworks such as PyTorch.


My research focuses on natural language processing (NLP), where I have released 11 open-source projects such as MianBot (700+★ on Github) and presented certain academic papers on top conferences like ACL, AAAI, CIKM, and WSDM.

International Awards

For the following achievements, I am the first author as well as the team leader.

2nd Place, CIKM Cup: Cross-lingual Short-text Matching Challenge

  • Proposed two densely-connected architectures, CPRNN and DACNN, for sentence pair modeling.
  • Fused semantic features from different levels to create diversity intra-models.
  • The solution has been oral presented on CIKM 2018 in Turin, Italy.

3rd Place, WSDM Cup: Fake News Classification Challenge

  • Implemented various NLI networks like ESIM and injected world knowledge using BERT.
  • Proposed a disagreement-aware model based on the single-word attention.
  • The paper has been oral presented on WSDM 2019 in Melbourne, Australia.

4th place, Google AI: Gendered Pronoun Resolution Competition

  • Leveraged the information redundancy from BERT and extracted features from the optimal layer.
  • Proposed a multi-heads Siamese semantic scorer for answer selection.
  • The paper has been presented on ACL 2019 in Florence, Italy.

Kaggle Competition Master, Ranked top 0.2% (233/114,366)

  • Top 1% (4/838), Gendered Pronoun Resolution Competition.
  • Top 1% (27/4,550), Toxic Comment Classification Challenge.
  • Top 3% (30/1,449), CareerCon 2019 - Help Navigate Robots.
  • Top 4% (103/3,165), Jigsaw Unintended Bias in Toxicity Classification.
  • Top 6% (223/3,633), CommonLit Readability Prize. 
  • Top 10% (384/3,946), TalkingData AdTracking Fraud Detection Challenge.

Work Experience

Taiwan AI Labs, Machine Learning Engineer, Sep 2019 ~ Now

Question Answering System

  • Propose a conditional question generator with mT5 for controllable QA data augmentation and as the base of dense retrieval, which improves recall@50 from baseline model by 16%.
  • Build a generative pseudo labeling pipeline using a open-domain passage retriever and machine reader, which improve the nDCG@10 by 4.2 - 9.7, on various domains.
  • Build an efficient passage re-ranker based on tiny-bert with a time-series based clustering framework for effective negative passage sampling.
  • Leverage FinBERT on QA analysis and slot filling for fintech dialogue system.

Natural Language Understanding 

  • Implement a document encoder with self-contrastive learning and a document clustering algorithm, which is scalable for million scale of streaming data.
  • Implement a GROVER-like generator as the backbone for topic detection, article rewriting, and tag generation.
  • Propose a semi-automatic framework for fake-news identification, which gathers evidence from event properties, user behavior and textual features.
  • Propose a SOTA Chinese typo correction system based on a boosting loop of automatic speech recognition and text to speech for weak supervision.
  • Build a general-purpose NLP training pipeline for team use involving data augmentation, data regularization, and unsupervised domain adaptation.

Education

Master in Department of Computer Science, NCKU                                         GPA: 4.30

  • Honorary member of the Phi Tau Phi Scholastic Honor Society. (Ranked 1st among all graduates.)
  • As a teaching assistant for Introduction to Data Science, Data Mining and Discrete Mathematics.
  • As a speaker / teaching assistant for introduction lectures of machine learning.

Bachelor in Department of Computer Science, NCKU                                      GPA: 3.92






  • Academic excellence awards 2016.
  • Academic excellence awards 2015.
  • Honorable mention on the graduation exhibition.
  • Research assistant on a question answering system project for the Ministry of Science and Technology.

Side Projects

I list some of my project experiences. You can refer to my Github for the other interesting ideas.

Mianbot

  • Got 700+ stars and 200+ forks on Github.
  • Implemented the hierarchical keywords matching using word2vec.
  • Implemented the IR-based searching module to support chit-chat.
  • Allow user to define customized scenarios with JSON.
  • The extracted QA pairs were released in PTT-Gossiping-Dataset, a widely-used Chinese chit-chat corpus.
Paragraph image 00 00@2x

NCKU Smart-Life LineBot

  • A Linebot that helps solve trivial matters such as restaurant recommendation.
  • The dialogue system is based on LUIS for intent classification.
  • The backend was built with Django / Flask (new version) and host on Heroku.
  • The backend is connected with Line server using the web API.
Paragraph image 00 00@2x

Knowledge & Skills


  • General Machine Learning
    • Classification, Regression, Clustering, Boosting, Feature Engineering.
  • Natural Language Processing
    • Sentence Pair Modeling: Natural language Inference, Machine Reading Comprehension, Sentence Similarity
    • Text Classification / Regression / Clustering
    • Deep contextual representation (ELMO / BERT / XLNet / ELECTRA / RoBERTa / ERINE2.0 / BigBird / T5)
  • Recommendation System
    • Factorization: Matrix Factorization, Factorization Machine, DeepFM
    • Graph Embedding: DeepWalk, Node2Vec, item2Vec

Publication


  1. Fake News Detection as Natural Language Inference. Kai-Chou Yang; Timothy Niven; Hung-Yu Kao. WSDM Cup 2019
  2. Fill the GAP: Exploiting BERT for Pronoun Resolution. Kai-Chou Yang; Timothy Niven; Tzu Hsuan Chou; Hung-Yu Kao. ACLWS'19
  3. Generalize Sentence Representation with Self-Inference. Kai-Chou Yang; Hung-Yu Kao. AAAI 2020
  4. The Prevalence and Impact of Fake News on COVID-19 Vaccination in Taiwan: A Retrospective Study of Digital Media. Yen-Pin Chen; Yi-Ying Chen; Kai-Chou Yang; Feipei Lai; Chien-Hua Huang; Yun-Nung Chen; Yi-Chin Tu. JMIR